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In silico drug repositioning based on the integration of chemical, genomic and pharmacological spaces

机译:基于化学,基因组和药理学空间的整合的硅药物重新定位

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Drug repositioning refers to the identification of new indications for existing drugs. Drug-based inference methods for drug repositioning apply some unique features of drugs for new indication prediction. Complementary information is provided by these different features. It is therefore necessary to integrate these features for more accurate in silico drug repositioning. In this study, we collect 3 different types of drug features (i.e., chemical, genomic and pharmacological spaces) from public databases. Similarities between drugs are separately calculated based on each of the features. We further develop a fusion method to combine the 3 similarity measurements. We test the inference abilities of the 4 similarity datasets in drug repositioning under the guilt-by-association principle. Leave-one-out cross-validations show the integrated similarity measurement IntegratedSim receives the best prediction performance, with the highest AUC value of 0.8451 and the highest AUPR value of 0.2201. Case studies demonstrate IntegratedSim produces the largest numbers of confirmed predictions in most cases. Moreover, we compare our integration method with 3 other similarity-fusion methods using the datasets in our study. Cross-validation results suggest our method improves the prediction accuracy in terms of AUC and AUPR values. Our study suggests that the 3 drug features used in our manuscript are valuable information for drug repositioning. The comparative results indicate that integration of the 3 drug features would improve drug-disease association prediction. Our study provides a strategy for the fusion of different drug features for in silico drug repositioning.
机译:药物重新定位是指现有药物的新适应症。药物重新定位的药物的推理方法适用于新的指示预测的药物的一些独特特征。互补信息由这些不同的功能提供。因此,有必要将这些特征集成在硅药物重新定位中更准确。在这项研究中,我们从公共数据库中收集3种不同类型的药物特征(即化学,基因组和药理空间)。药物之间的相似性是基于每个特征分别计算的。我们进一步开发了一种结合3个相似度测量的融合方法。我们在逐个关联原理下测试4个相似性数据集的推断能力。休假 - 一交叉验证显示集成相似度测量集成电器接收最佳预测性能,最高AUC值为0.8451,最高的AUPR值为0.2201。案例研究表明,Integratedsim在大多数情况下产生最大的确认预测。此外,我们使用我们研究中的数据集比较了我们的集成方法,其中包含了3个其他相似性融合方法。交叉验证结果表明我们的方法在AUC和AUPR值方面提高了预测准确性。我们的研究表明,我们的手稿中使用的3种药物特征是药物重新定位的宝贵信息。比较结果表明,3药物特征的整合将改善毒性疾病关联预测。我们的研究提供了硅药重新定位的不同药物特征的融合策略。

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